Data Scientist

KnoWho
Manchester
4 days ago
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Data Scientist - Python / R / SQL / Media Mix Models (MMM) / Machine Learning / ML / Econometrics / Marketing - Manchester (mostly remote)

We're looking for a Data Scientist who has an understanding of marketing and/or media, for a Manchester based agency.

Although they are based in Manchester, the role is mostly remote, at most you'd be going into the office once a month. You'll be the 2nd person on the team, working with an experienced Data Scientist continuing to develop and grow with the team.

Requirements:

  • 2+ years commercial experience in Data Scientist role
  • Experience in Python, R, and SQL.
  • Experience with Excel / Google sheets
  • Prior experience with base level AI / ML prompts
  • Experience working with marketing, digital marketing, or marketing data

Desirable experience includes Experience with Google Cloud Platform (GCP) & Big Query and Media Mix Models (MMM)

Role overview:

  • Use Python, R, and SQL for internal and external database queries and integrations
  • Create and develop Media Mix Models (MMM) for clients
  • Work with internal teams and stakeholders to provide clean and clear data analysis
  • Design and run end to end Econometrics
  • Implement Machine Learning, be involved in the growth of the team, and be innovative to increase the agencies offerings for clients.

Salary is up to £42K, with regular salary reviews. Opportunities for personal development, progression & promotions, opportunities to be involved in some groundbreaking innovation and alpha/beta testing with new tech and marketing releases.

Data Scientist - Python / R / SQL / Machine Learning / ML / Econometrics / Marketing - Manchester (mostly remote)


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